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Evolutionary algorithm based on different semantic similarity functions for synonym recognition in the biomedical domain

机译:基于不同语义相似度函数的进化算法在生物医学领域的同义词识别

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摘要

One of the most challenging problems in the semantic web field consists of computing the semantic similarity between different terms. The problem here is the lack of accurate domain-specific dictionaries, such as biomedical, financial or any other particular and dynamic field. In this article we propose a new approach which uses different existing semantic similarity methods to obtain precise results in the biomedical domain. Specifically, we have developed an evolutionary algorithm which uses information provided by different semantic similarity metrics. Our results have been validated against a variety of biomedical datasets and different collections of similarity functions. The proposed system provides very high quality results when compared against similarity ratings provided by human experts (in terms of Pearson correlation coefficient) surpassing the results of other relevant works previously published in the literature.
机译:语义网领域中最具挑战性的问题之一是计算不同术语之间的语义相似度。这里的问题是缺少准确的领域特定词典,例如生物医学,金融或任何其他特定的动态领域。在本文中,我们提出了一种新方法,该方法使用不同的现有语义相似性方法在生物医学领域中获得精确的结果。具体来说,我们开发了一种进化算法,该算法使用了不同语义相似性度量提供的信息。我们的结果已针对各种生物医学数据集和相似功能的不同集合进行了验证。与人类专家提供的相似性等级(根据皮尔逊相关系数)相比,所提出的系统提供了非常高质量的结果,超过了先前在文献中发表的其他相关著作的结果。

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